论文标题
计划编年史
Planning to Chronicle
论文作者
论文摘要
一类重要的应用程序需要机器人监视,审查或记录不确定的时间扩展过程的演变。这种情况导致了一个有趣的计划问题系列,其中机器人在看到的情况下受到限制,因此选择要注意的是什么。这种环境的区别特征在于,机器人通过其传感器捕获的内容有影响,但对不断发展的过程没有任何因果权的权威。因此,机器人的目标是观察基本过程并产生发生事件的“编年史”,但要遵守可能引起的事件序列的目标规范。当机器人旨在收集一组观测值以满足其顺序结构的丰富规范时,本文研究了此类问题的变体。我们通过通过隐藏的马尔可夫模型的变体对随机过程进行建模,并指定感兴趣的事件序列作为常规语言,从而开发“突变器”的词汇,从而表达这类问题,从而研究了这类问题。在关于马尔可夫模型收集的信息的不同假设下,我们制定并解决了不同的计划问题。核心的基本想法是事件模型和规范自动机之间的产品构建。本文通过借鉴了一些在模拟深度分析的小案例研究来报告和比较性能指标。
An important class of applications entails a robot monitoring, scrutinizing, or recording the evolution of an uncertain time-extended process. This sort of situation leads an interesting family of planning problems in which the robot is limited in what it sees and must, thus, choose what to pay attention to. The distinguishing characteristic of this setting is that the robot has influence over what it captures via its sensors, but exercises no causal authority over the evolving process. As such, the robot's objective is to observe the underlying process and to produce a `chronicle' of occurrent events, subject to a goal specification of the sorts of event sequences that may be of interest. This paper examines variants of such problems when the robot aims to collect sets of observations to meet a rich specification of their sequential structure. We study this class of problems by modeling a stochastic process via a variant of a hidden Markov model, and specify the event sequences of interest as a regular language, developing a vocabulary of `mutators' that enable sophisticated requirements to be expressed. Under different suppositions about the information gleaned about the Markov model, we formulate and solve different planning problems. The core underlying idea is the construction of a product between the event model and a specification automaton. The paper reports and compares performance metrics by drawing on some small case studies analyzed in depth in simulation.